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Marco Duarte

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2 papers
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2

NeurIPS Conference 2008 Conference Paper

Sparse Signal Recovery Using Markov Random Fields

  • Volkan Cevher
  • Marco Duarte
  • Chinmay Hegde
  • Richard Baraniuk

Compressive Sensing (CS) combines sampling and compression into a single sub-Nyquist linear measurement process for sparse and compressible signals. In this paper, we extend the theory of CS to include signals that are concisely represented in terms of a graphical model. In particular, we use Markov Random Fields (MRFs) to represent sparse signals whose nonzero coefficients are clustered. Our new model-based reconstruction algorithm, dubbed Lattice Matching Pursuit (LaMP), stably recovers MRF-modeled signals using many fewer measurements and computations than the current state-of-the-art algorithms.

NeurIPS Conference 2005 Conference Paper

Recovery of Jointly Sparse Signals from Few Random Projections

  • Michael Wakin
  • Marco Duarte
  • Shriram Sarvotham
  • Dror Baron
  • Richard Baraniuk

Compressed sensing is an emerging field based on the revelation that a small group of linear projections of a sparse signal contains enough information for reconstruc- tion. In this paper we introduce a new theory for distributed compressed sensing (DCS) that enables new distributed coding algorithms for multi-signal ensembles that exploit both intra- and inter-signal correlation structures. The DCS theory rests on a new concept that we term the joint sparsity of a signal ensemble. We study three simple models for jointly sparse signals, propose algorithms for joint recov- ery of multiple signals from incoherent projections, and characterize theoretically and empirically the number of measurements per sensor required for accurate re- construction. In some sense DCS is a framework for distributed compression of sources with memory, which has remained a challenging problem in information theory for some time. DCS is immediately applicable to a range of problems in sensor networks and arrays.